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Learning Deep Dynamical Models of a Waste Incineration Plant from In-furnace Images and Process Data

机译:从炉内图像和过程数据学习废物焚烧厂的深层动态模型

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This paper presents an approach for predicting in-furnace images and sensor signal readings for a waste incineration plant, utilizing a deep dynamical model based on Kalman Variational Auto-Encoders that considers a range of process signals, control inputs, and time-series sequences of infurnace image data. This is motivated by the need for automatic control systems to be able to anticipate abnormalities in incoming waste to prevent potential instabilities during and after combustion. Experimental results with real plant data show that the proposed strategy provides an improved prediction accuracy for both process signals and in-furnace images compared to a Long Short-Term Memory neural network.
机译:本文介绍了一种方法,用于预测废物焚烧厂的炉内图像和传感器信号读数,利用基于Kalman变分自动编码器的深层动力学模型,其考虑了一系列处理信号,控制输入和时间序列序列Infurnace图像数据。这是由于需要自动控制系统能够预测进入废物的异常来防止燃烧期间和之后的潜在不稳定性的动机。与真实植物数据的实验结果表明,与长短短期记忆神经网络相比,所提出的策略为处理信号和炉内图像提供了改进的预测精度。

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